{
 "metadata": {
  "signature": "sha256:a0ec9d2d96a4fff926ff2b15a63382d754f18fa37fac1799966eff18b4d3a8f0"
 },
 "nbformat": 3,
 "nbformat_minor": 0,
 "worksheets": [
  {
   "cells": [
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Matplotlib: arrows\n",
      "======================================================================\n",
      "\n",
      "Some example code for how to plot an arrow using the Arrow function."
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "from matplotlib.pyplot import *\n",
      "from numpy import *\n",
      "\n",
      "x = arange(10)\n",
      "y = x\n",
      "\n",
      "# Plot junk and then a filled region\n",
      "plot(x, y)\n",
      "\n",
      "# Now lets make an arrow object\n",
      "arr = Arrow(2, 2, 1, 1, edgecolor='white')\n",
      "\n",
      "# Get the subplot that we are currently working on\n",
      "ax = gca()\n",
      "\n",
      "# Now add the arrow\n",
      "ax.add_patch(arr)\n",
      "\n",
      "# We should be able to make modifications to the arrow.\n",
      "# Lets make it green.\n",
      "arr.set_facecolor('g')"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAAV0AAAEACAYAAAAQmKWeAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nKyKSQiq6IiIp9P8BpUFgYtNRZVwAAAAASUVORK5CYII=\n",
       "text": [
        "<matplotlib.figure.Figure at 0x7f6c6dc7f2d0>"
       ]
      }
     ],
     "prompt_number": 3
    }
   ],
   "metadata": {}
  }
 ]
}